The primary goal of structural health monitoring is to detect damage at its onset before it reaches a critical level. In the present work an in-depth investigation addresses deep learning applied to data-driven damage detection in nonlinear dynamic systems. In particular, autoencoders and generative adversarial networks are implemented leveraging on 1D convolutional neural networks. The onset of damage is detected in the investigated nonlinear dynamic systems by exciting random vibrations of varying intensity, without prior knowledge of the system or the excitation and in unsupervised manner. The comprehensive numerical study is conducted on dynamic systems exhibiting different types of nonlinear behavior. An experimental application related to a magneto-elastic nonlinear system is also presented to corroborate the conclusions.

Deep learning architectures for data-driven damage detection in nonlinear dynamic systems under random vibrations / Joseph, Harrish; Quaranta, Giuseppe; Carboni, Biagio; Lacarbonara, Walter. - In: NONLINEAR DYNAMICS. - ISSN 0924-090X. - (2024). [10.1007/s11071-024-10270-1]

Deep learning architectures for data-driven damage detection in nonlinear dynamic systems under random vibrations

Joseph, Harrish;Quaranta, Giuseppe
;
Carboni, Biagio;Lacarbonara, Walter
2024

Abstract

The primary goal of structural health monitoring is to detect damage at its onset before it reaches a critical level. In the present work an in-depth investigation addresses deep learning applied to data-driven damage detection in nonlinear dynamic systems. In particular, autoencoders and generative adversarial networks are implemented leveraging on 1D convolutional neural networks. The onset of damage is detected in the investigated nonlinear dynamic systems by exciting random vibrations of varying intensity, without prior knowledge of the system or the excitation and in unsupervised manner. The comprehensive numerical study is conducted on dynamic systems exhibiting different types of nonlinear behavior. An experimental application related to a magneto-elastic nonlinear system is also presented to corroborate the conclusions.
2024
Autoencoder; Convolutional neural network; Damage detection; Deep learning; Generative adversarial network; Structural health monitoring
01 Pubblicazione su rivista::01a Articolo in rivista
Deep learning architectures for data-driven damage detection in nonlinear dynamic systems under random vibrations / Joseph, Harrish; Quaranta, Giuseppe; Carboni, Biagio; Lacarbonara, Walter. - In: NONLINEAR DYNAMICS. - ISSN 0924-090X. - (2024). [10.1007/s11071-024-10270-1]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1720180
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